Robust Optimization of Vaccine Distribution Problem with Demand Uncertainty

Faiqul Fikri, B. P. Silalahi, J. Jaharuddin
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Abstract

This study proposes a multi objective optimization model for vaccine distribution problems using the Maximum Covering Location Problem (MCLP) model. The objective function of the MCLP model in this study is to maximize the fulfillment of vaccine demand for each priority group at each demand point. In practice, the MCLP model requires data on the amount of demand at each demand point, which in reality can be influenced by many factors so that the value is uncertain. This problem makes the optimization model to be uncertain linear problem (ULP). The robust optimization approach converts ULP into a single deterministic problem called Robust Counterpart (RC) by assuming the demand quantity parameter in the constraint function is in the set of uncertainty boxes, so that a robust counterpart to the model is obtained. Numerical simulations are carried out using available data. It is found that the optimal value in the robust counterpart model is not better than the deterministic model but is more resistant to changes in parameter values. This causes the robust counterpart model to be more reliable in overcoming uncertain vaccine distribution problems in real life. This research is limited to solving the problem of vaccine distribution at a certain time and only assumes that the uncertainty of the number of requests is within a specified range so that it can be developed by assuming that the number of demand is dynamic.
具有需求不确定性的疫苗配送问题的稳健优化
本研究利用最大覆盖位置问题(MCLP)模型,为疫苗分配问题提出了一个多目标优化模型。本研究中 MCLP 模型的目标函数是最大限度地满足每个需求点上每个优先群体的疫苗需求。在实践中,MCLP 模型需要每个需求点的需求量数据,而现实中的需求量会受到很多因素的影响,因此其值是不确定的。这个问题使得优化模型成为不确定线性问题(ULP)。稳健优化方法通过假定约束函数中的需求量参数位于不确定性箱集中,将 ULP 转化为一个单一的确定性问题,称为稳健对应问题(RC),从而得到模型的稳健对应问题。利用现有数据进行了数值模拟。结果发现,稳健对应模型的最优值并不比确定性模型好,但更能抵御参数值的变化。这使得鲁棒对应模型在克服现实生活中不确定的疫苗分布问题时更加可靠。本研究仅限于解决某一时间的疫苗分配问题,并且仅假设需求数量的不确定性在指定范围内,因此可以通过假设需求数量是动态的来进行开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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